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Understanding the Fundamentals of Device Fingerprinting by@pigivinci
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Understanding the Fundamentals of Device Fingerprinting

by Pierluigi VinciguerraMay 29th, 2023
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Device fingerprinting is a method to identify a device using a combination of attributes provided by the device itself, via its browser and device configuration. The more pieces I add to the fingerprint, the more granular it becomes. In this way, I can abstract a small niche of users with one fingerprint and track their behavior, without using cookies.
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A device fingerprint - or device fingerprinting - is a method used to identify a device with a combination of attributes provided by the device itself, via its browser and device configuration. The attributes collected as data to build the device fingerprint depend on the solution used to build it, but typically the most common are:


  • operating system
  • screen size and resolution
  • user-agent
  • system language and system country
  • device orientation
  • battery level
  • installed fonts and installed plugins
  • system uptime
  • IP address
  • HTTP request headers


Since most of these parameters are read from the browser settings, we can also use the term “browser fingerprinting” with the same connotation.


If you want to test which machine features are leaked from your browser just by browsing a web page, you can use this online test to check with your eyes, simply with a Javascript executed on the server.


Consider also that most of the common anti-bot solutions use this basic information and enrich them with more complex test results, like Canvas and WebGL fingerprinting, to add even more details to these fingerprints.


The point is: the more pieces I add to the fingerprint, the more granular it becomes (because it’s less likely for two users to have the exact same device configuration). In this way, I can abstract a small niche of users with one fingerprint and track their behavior, without using cookies.


And this is key in these times when cookies are under the scrutiny of GDPR, CCPA, and other internet regulations and users are getting more aware of them, deciding to opt out or wipe them from their machines. But it’s not only a matter of marketing, but also anti-fraud and anti-bot in general are involved in developing this kind of technologies. In fact, detecting fingerprints that contain some incompatible data or outliers in configurations, can raise some red flags in the traffic.


How a device fingerprint is collected?

As we have seen, a fingerprint is a collection of single pieces of information collected when a device connects to a server. Depending on the method used for collecting this information, we can divide them by active and passive fingerprinting techniques.


  • Active fingerprinting is when a server interacts with the device, using a challenge that the browser needs to solve. An example can be the Canvas fingerprinting or WebGL fingerprinting technique. In both cases, an image with a text overlay is rendered off-screen. On different hardware, this image and its result hash string are rendered differently, so we have different fingerprints for different hardware.


  • Passive fingerprinting is when the server simply gathers the information passed by the browser and the different HTTP connection layers: IP address, request headers, user agent, screen resolution, operating system, and so on.


Modern anti-bot software combines both these families of techniques and integrates them with behavioral analysis and AI to detect incongruences in the settings of the device and the scraper.

If you’re curious about the number and the type of information that can be gathered via your web browser, you can have a look at deviceinfo.me, an online test where you can discover all these details.


As you can see from the following images, the description of your device is quite accurate.




Fingerprinting and privacy concerns

As we mentioned before, fingerprinting techniques are gaining traction not only in the anti-bot industry but also in the marketing one, since more and more people are concerned about cookie usage by websites. Since it’s possible to accept or decline the cookie usage of websites and, since they are stored in the user's device, they can also be deleted, their efficacy for marketing purposes is declining.


But if you’re using a fingerprinting tool in your online marketing solution, maybe you have a less granular detail than the single users’ cookie collection but there’s no way to opt out for them. So you can create very granular clusters of customers, like “people from city X using the latest Mac laptop model, with a second screen, browsing via Chrome v. 113 with Y extension installed, and connecting with ISP Z”. It is such a detailed description that the European think tank about online privacy called Article 29 Data Protection working party, expressed its opinion about fingerprinting and European data protection laws.


To make a long story short: collecting all these pieces of information from the browser to create a unique fingerprint makes the ePrivacy directive applicable to this technology. This implies that visitors of a website, just like what happens for cookies, should be informed if there are any fingerprinting techniques used on the website, unless they are meant only to make the website work correctly.

How to mask your fingerprint

Having a look at the website, we can notice the several layers of information gathered to create a fingerprint.

Connection layer


A TLS fingerprint is created using the handshake packets that the client and server exchange before establishing an HTTP connection. It’s quite a common technique used by major anti-bot providers, as we can see from this Cloudflare article.


To avoid raising red flags when scraping, you can use real browsers with Playwright or Selenium, which will use ciphers not in the blacklist, or change ciphers in your Scrapy project’s settings.

Of course, the server knows also the IP address of the device that is connecting and can derive from it several additional info, like your country, state, ISP, and so on.


We can change all these details by using a proxy provider and depending on your needs, you can use datacenter, residential or mobile IPs.


Browser layer fingerprint

Most of the other information used to fingerprint you are coming from your browser settings and how the browser reacts to Canvas and WebGL active fingerprinting.


Typically, if you’re trying to scrape a website protected by a modern anti-bot solution, you cannot use solutions like Scrapy but you’ll need to use a webdriver or a real browser to bypass the protection.


In these cases, providing a plausible machine setup with no discrepancies in the settings is key to creating a fingerprint that seems as legit as possible.


As an example, using Playwright and Chrome in headless mode should trigger some red flags, since it’s easy to detect, as we can see from screenshots below.




Another example is connections from a server machine won’t show any microphone and camera.

But if you use anti-detect browsers, which allow you to create custom profiles that mimic different hardware and OS setups, you can send more plausible information to the server, creating a more legit fingerprint.






Final remarks

We have seen how much information is transmitted together with a simple browser connection to a website and how they can be used to both track users’ behavior and detect bots.

While all these fingerprinting techniques can raise some concerns about privacy, especially in countries where this information can be used to limit private freedom, we luckily have several tools in our toolbelt to use to mask our real online traces, and some of them can be used also for our web scraping projects.


Also published here.